Ahmed Md Sabbir, Hasan Tanvir, Islam Salekul, Ahmed Nova
Design Inclusion and Access Lab, North South University, Dhaka, Bangladesh.
Department of Computer Science and Engineering, United International University, Dhaka, Bangladesh.
JMIR Res Protoc. 2024 Apr 24;13:e51540. doi: 10.2196/51540.
Understanding a student's depressive symptoms could facilitate significantly more precise diagnosis and treatment. However, few studies have focused on depressive symptom prediction through unobtrusive systems, and these studies are limited by small sample sizes, low performance, and the requirement for higher resources. In addition, research has not explored whether statistically significant rhythms based on different app usage behavioral markers (eg, app usage sessions) exist that could be useful in finding subtle differences to predict with higher accuracy like the models based on rhythms of physiological data.
The main objective of this study is to explore whether there exist statistically significant rhythms in resource-insensitive app usage behavioral markers and predict depressive symptoms through these marker-based rhythmic features. Another objective of this study is to understand whether there is a potential link between rhythmic features and depressive symptoms.
Through a countrywide study, we collected 2952 students' raw app usage behavioral data and responses to the 9 depressive symptoms in the 9-item Patient Health Questionnaire (PHQ-9). The behavioral data were retrieved through our developed app, which was previously used in our pilot studies in Bangladesh on different research problems. To explore whether there is a rhythm based on app usage data, we will conduct a zero-amplitude test. In addition, we will develop a cosinor model for each participant to extract rhythmic parameters (eg, acrophase). In addition, to obtain a comprehensive picture of the rhythms, we will explore nonparametric rhythmic features (eg, interdaily stability). Furthermore, we will conduct regression analysis to understand the association of rhythmic features with depressive symptoms. Finally, we will develop a personalized multitask learning (MTL) framework to predict symptoms through rhythmic features.
After applying inclusion criteria (eg, having app usage data of at least 2 days to explore rhythmicity), we kept the data of 2902 (98.31%) students for analysis, with 24.48 million app usage events, and 7 days' app usage of 2849 (98.17%) students. The students are from all 8 divisions of Bangladesh, both public and private universities (19 different universities and 52 different departments). We are analyzing the data and will publish the findings in a peer-reviewed publication.
Having an in-depth understanding of app usage rhythms and their connection with depressive symptoms through a countrywide study can significantly help health care professionals and researchers better understand depressed students and may create possibilities for using app usage-based rhythms for intervention. In addition, the MTL framework based on app usage rhythmic features may more accurately predict depressive symptoms due to the rhythms' capability to find subtle differences.
INTERNATIONAL REGISTERED REPORT IDENTIFIER (IRRID): DERR1-10.2196/51540.
了解学生的抑郁症状有助于更精确地进行诊断和治疗。然而,很少有研究关注通过非侵入式系统预测抑郁症状,并且这些研究受到样本量小、性能低和资源需求高的限制。此外,尚未有研究探讨基于不同应用程序使用行为标记(如应用程序使用会话)的具有统计学意义的节律是否存在,这些节律可能有助于发现细微差异,从而像基于生理数据节律的模型一样以更高的准确性进行预测。
本研究的主要目的是探索在资源不敏感的应用程序使用行为标记中是否存在具有统计学意义的节律,并通过这些基于标记的节律特征预测抑郁症状。本研究的另一个目的是了解节律特征与抑郁症状之间是否存在潜在联系。
通过一项全国性研究,我们收集了2952名学生的原始应用程序使用行为数据以及对9项患者健康问卷(PHQ - 9)中9种抑郁症状的回答。行为数据通过我们开发的应用程序获取,该应用程序先前已用于我们在孟加拉国针对不同研究问题的试点研究。为了探索基于应用程序使用数据是否存在节律,我们将进行零振幅检验。此外,我们将为每个参与者开发一个余弦模型以提取节律参数(如高峰相位)。此外,为了全面了解节律,我们将探索非参数节律特征(如日际稳定性)。此外,我们将进行回归分析以了解节律特征与抑郁症状的关联。最后,我们将开发一个个性化多任务学习(MTL)框架,通过节律特征预测症状。
应用纳入标准(如拥有至少2天的应用程序使用数据以探索节律性)后,我们保留了2902名(98.31%)学生的数据进行分析,有2448万次应用程序使用事件,以及2849名(98.17%)学生的7天应用程序使用数据。这些学生来自孟加拉国的所有8个行政区,包括公立和私立大学(19所不同的大学和52个不同的系)。我们正在分析数据,并将在同行评审的出版物中发表研究结果。
通过全国性研究深入了解应用程序使用节律及其与抑郁症状的联系,可显著帮助医疗保健专业人员和研究人员更好地了解抑郁学生,并可能为利用基于应用程序使用的节律进行干预创造可能性。此外,基于应用程序使用节律特征的MTL框架可能由于节律发现细微差异的能力而更准确地预测抑郁症状。
国际注册报告识别码(IRRID):DERR1 - 10.2196/51540。